ORIGINAL ARTICLE Identification of quantitative genetic components of fitness variation in farmed, hybrid and native salmon in the wild

Size: px
Start display at page:

Download "ORIGINAL ARTICLE Identification of quantitative genetic components of fitness variation in farmed, hybrid and native salmon in the wild"

Transcription

1 OPEN (1) 11, 47 & 1 Macmillan Publishers Limited All rights reserved 18-67X/1 ORIGINAL ARTICLE Identification of quantitative genetic components of fitness variation in farmed, hybrid and native salmon in the wild F Besnier 1, KA Glover 1, S Lien 2, M Kent 2, MM Hansen 1,3, X Shen 4, and Ø Skaala 1 Feral animals represent an important problem in many ecosystems due to interbreeding with wild conspecifics. Hybrid offspring from wild and domestic parents are often less adapted to local environment and ultimately, can reduce the fitness of the native population. This problem is an important concern in Norway, where each year, hundreds of thousands of farm Atlantic salmon escape from fish farms. Feral fish outnumber wild populations, leading to a possible loss of local adaptive genetic variation and erosion of genetic structure in wild populations. Studying the genetic factors underlying relative performance between wild and domesticated conspecific can help to better understand how domestication modifies the genetic background of populations, and how it may alter their ability to adapt to the natural environment. Here, based upon a large-scale release of wild, farm and wild x farm salmon crosses into a natural river system, a genome-wide quantitative trait locus (QTL) scan was performed on the offspring of full-sib families, for traits related to fitness (length, weight, condition factor and survival). Six QTLs were detected as significant contributors to the phenotypic variation of the first three traits, explaining collectively between 9.8 and 14.8% of the phenotypic variation. The seventh QTL had a significant contribution to the variation in survival, and is regarded as a key factor to understand the fitness variability observed among salmon in the river. Interestingly, strong allelic correlation within one of the QTL regions in farmed salmon might reflect a recent selective sweep due to artificial selection. (1) 11, 47 ; doi:.38/hdy.1.1; published online 18 March 1 INTRODUCTION Artificial selection in captive wild animals represents an extreme example of evolutionary response to directional selection and therefore, has long been used as a model to understand the mechanisms behind evolution (Darwin, 1868; Lewin, 9). Animal domestication defined here as an evolutionary process involving the genotypic adaptation of animals to the captive environment (Price and King, 1968) is the result of both selection for desired traits, relaxation of selection for non-desired traits and non-selective forces, such as genetic drift. A side effect of animal domestication is often a loss of adaptive variation that is important for persistence in wild habitats. Various phenotypic alterations of the wild type make most domestic animals less fit in the natural environment than their wild counterparts. This is, for example, the case of body shape (Pulcini et al., 13), behavior (Price, 1999) or coat coloration (Belyaev et al., 1981), linked to mimicry in the wild. Alteration of coat coloration in domestic animals is also often linked with pathogenic alleles (Webb and Cullen, ). However, for a variety of organisms, wild populations are regularly exposed to gene flow from domesticated individuals, either through accidental escapes (Clifford et al., 1998), or voluntarily introduced as part of large-scale translocation efforts (Fischer and Lindenmayer, ), or restocking (Koljonen et al., 2). The Atlantic salmon (Salmo salar L.) represents an outstanding example of large-scale accidental escapes of farmed strains that subsequently interbreed with wild populations (Clifford et al., 1998; McGinnity et al., 3). In Norway, a study of 22 rivers revealed that the amount of genetic introgression from farm salmon in wild populations was between 2% in the most preserved rivers and 47% in the most affected ones (Glover et al., 13). Wild Atlantic salmon populations are genetically structured (Verspoor et al., ), and may be locally adapted to the environments that they inhabit (Garcia de Leaniz et al., 7). However, in Norway, many populations have been exposed to farm escapees during the past 4 years, and the introduction of farm fish in those rivers represents a conservation problem through the risk of erosion of the genetic structure, loss of local adaptive genetic variation or total replacement of the wild population by domesticated strains (Rhymer and Simberloff, 1996; Allendorf et al., 1). Simultaneously, farmed salmon have undergone 4 years (approximately generations) of selective breeding for productionrelated traits, and now differ from wild salmon in many aspects such as allelic frequencies at molecular markers (Skaala et al., 4), behavior (Einum and Fleming, 1997; Fleming and Einum, 1997), growth (Solberg et al., 13) and gene expression (Debes et al., 12). Experimental studies in rivers have revealed that offspring of farmed salmon display significantly reduced survival when compared with offspring of native wild salmon (McGinnity et al., 1997; Skaala et al., 12). In addition, important differences in other life history traits such as growth or age at maturity have been demonstrated between farmed and wild salmon (McGinnity et al., 3). 1 Department of Population Genetics and Ecology, Institute of Marine Research, Bergen, Norway; 2 Department of Animal and Aquacultural Sciences, Centre for Integrative Genetics, Norwegian University of Life Sciences, Ås, Norway; 3 Department of Bioscience, Aarhus University, Aarhus C, Denmark; 4 Department of Medical Epidemiology and Biostatistics (MEB), Karolinska Institutet, Stockholm, Sweden and MRC Human Genetics Unit, MRC Institute of Genetics and Molecular Medicine (IGMM), University of Edinburgh, Edinburgh, UK Correspondence: Dr F Besnier, Department of Population Genetics and Ecology, Institute of Marine Research, Postbox 187 Nordnes, Bergen 817, Norway. francois.besnier@imr.no Received 4 September 14; revised 4 January 1; accepted February 1; published online 18 March 1

2 48 Genetic differences between farm and wild Atlantic salmon have been investigated at various levels: (i) allele frequencies of molecular genetic markers to establish a diagnostic identification tool (Karlsson et al., 11), (ii) among markers under selection and selective sweeps, that is, reduction in genetic variation in DNA that surrounds a locus that is under strong directional selection, to assess the footprint of selection in commercial populations (Martinez et al., 13) or (iii) by identifying genomic regions associated with phenotypic traits under selection in hatchery condition (Houston et al., 9; Baranski et al., ). While there is a considerable interest in investigating the genetic architecture of fitness in salmonids (Carlson and Seamons, 8), this latter aspect remains poorly documented. A better documentation of genetic architecture of fitness of wild and farm salmons in the natural habitat would provide crucial information to predict the long-term evolutionary trajectories of wild populations invaded by farm escapees. In such context, combining approaches (ii) and (iii) could provide a more powerful approach than each method separately. Commercial salmon strains were indeed actively selected for a set of traits, and genes controlling these traits are expected to display both association with the phenotypic variance of the trait, and bear the footprint of directional selection. For this reason, we propose here to combine a quantitative trait locus (QTL) scan with a search for loss of genetic diversity. QTL studies encompass a set of genetic and statistical approaches aiming to identify genomic regions associated with the phenotypic variation of complex traits. However, genotype-by-environment (G E) interaction is an important factor when detecting QTLs. Ideally, QTLs should be identified in a relevant environmental setting, which for farmed-wild salmon interactions would mean identifying QTLs in a natural environment. To date, most QTL detection studies in salmonid fishes have taken place in captive environments (Reid et al., ; Baranski et al., ). Investigation of the genetic architecture of a given phenotype in natural environments is, however feasible, either through genome-wide association studies or through variance component QTL mapping. Most such studies have focused on intensively monitored and pedigreed populations (Slate et al., 2), though examples of experimental crosses conducted in natural environments and opportunistic use of admixed populations for admixture mapping also appear in the literature (Malek et al., 12). In the present study, we used a variance component mapping approach to identify QTLs for mortality rate in the river, and three other important fitness-related morphological traits that diverge between wild and farmed Atlantic salmon, that is, length, weight and condition factor (CF). Those traits are related to growth and body conformation. They are expected to be differentially selected for in hatchery and river conditions, and thus, provide a suitable proxy for some component of the fitness. We made use of an experiment where fertilized eggs from wild, farmed and wild x farmed crosses were transplanted into a wild environment as part of a large-scale common garden experiment (Skaala et al., 12). Our aim was to address the following questions: (i) Can we identify QTL regions for the aforementioned traits?; (ii) Do the QTL regions identified in a natural environment correspond to QTL for the same traits previously identified in hatchery environments?; (iii) Does strong selection at the traits in farmed salmon manifest itself at the genomic level, for example, as loss of variation around QTLs due to selective sweeps? MATERIALS AND METHODS Study area and experimental populations The Guddal, river, which is the location of the present study, drains into the middle region of the Hardangerfjord on the west coast of Norway. The length of the river available for the anadromous species, Atlantic salmon and sea trout (Salmo trutta L.), is approximately 2 km, from the sea up to a waterfall (Liarefossen), which acts as a barrier for ascending fish. Above the waterfall, resident brown trout is the only naturally occurring fish species. The river supports a downstream wolf trap (Millis, 1991), which permits the capture of most smolts migrating from the river into the sea as part of their anadromous lifestyle. In 4 and, a total of eggs from respectively farmed, 14 wild and 17 hybrid families were planted above the waterfall, into the nonanadromous area (1 m 2 ) of the river. Parents of the hybrid families were sampled from the parents of the farm and wild families. This was part of a long-term study investigating survival in a natural habitat (Skaala et al., 12). The farmed fish were provided from Marine Harvest fish farm, from a widely used domesticated Norwegian strain (Mowi), while the wild salmon eggs were from the Lærdal river, also from the west of Norway. Despite not being a natural population for the Guddal river, salmons from the Lærdal population are expected to perform better in this environment than a commercial strain that had been subject to approximately generations of domestication selection in the absence of predation and competition for resources. Detail regarding crosses and family data are given in Supplementary Table 1. Earlier studies have demonstrated that this farmed strain displays significantly higher growth rates compared with wild salmon under identical conditions (Solberg et al., 13), and reduced survival in the Guddal river itself when compared with the river Lærdal population (Skaala et al., 12). Genotype and phenotype In Atlantic salmon, smolt migration (migration from fresh water to the sea) typically involves juvenile fishes of 2 4 years after hatching. This migration is seasonal and occurs in spring, between April and May in the study region. Smolts migrating from the river Guddal in the years following egg planting were captured in the downstream trap. All captured smolt on the trap were tranquilized, and length (L), weight (W) and condition factor CF ¼ W L were measured for each fish. Mean ± s.d. of each phenotype is reported for each fish type in Table 1. Part of the adipose fin was cut and stored in a 2-ml tube with absolute ethanol for DNA extraction. Upon recovery, smolts were released in the river below the trap. In total, 2411 smolts, respectively 82 from cohorts 4 and 169 from cohort were captured in the trap in the five years following egg planting. Parentage identification was obtained by genotyping parents and captured offspring using four microsatelite markers Ssa8, Ssa2, Ssa197 (O Reilly et al., 1996) and SSOSL8 (Slettan et al., 199). Using the family assignment program (Taggart, 7), the four markers permitted 49% of the offspring to be unambiguously identified to their family of origin. After identification of the parentage (Skaala et al., 12), all stocked families had surviving smolts that were recaptured. The average sample size (number of re-captured smolts) per family was 47 ± 2, with family survival rates varying from. to 6% of the planted eggs. The genotyping was performed on an Illumina assay (Illumina, San Diego, CA, USA) according to the manufacturer s instructions. Initially, the parents of each full sib family were genotyped for the 6 SNPs available on the salmon 6 K SNP chip (Lien et al., 11;Bourretet al., 13). The position of each SNP on the salmon genome was determined from the linkage map developed on this set of markers (Lien et al., 11). From the initial 6 SNPs genotyped, 272 were selected for genotyping all the captured fishes from cohorts 4 and Table 1 Summary statistics (mean ± s.d.) for each of the three studied phenotypes and for the three types Length (mm) Weight (g) Condition factor Farmed 14. ± ±.2.82 ±.7 Hybrid 14.3 ±. 23. ± ±.7 Wild 14.2 ± ±.3.82 ±.8 total 14.9 ± ±..82 ±.9

3 49 (Supplementary Table 2). The selection of those 272 SNP was conducted to optimize information content for QTL mapping, and was based on both the marker position on the salmon genome and the allelic frequencies in the parental generation. SNPs were selected for providing genotype information at regular intervals of 3 cm in the female recombination map, and for being polymorphic within full sib families, with, when possible, heterozygous parental genotypes in each family. After genotyping all captured offspring at 272 SNP markers, the family assignment initially established from microsatellite data was verified based on the SNP information. The family assignments from the two marker sets were concordant with more than 99% overlap. QTL analysis A genome-wide scan for QTL was performed via a two-step variance component method (George et al., ). The QTL scan was based on the marker information from the 272 SNPs typed in all individuals. A polygenic model with fixed cohort, smolt age effects and random polygenic effects (null model) was compared with a model including a random QTL effect (model 1), y ¼ Xb þ a þ e ðnull modelþ y ¼ Xb þ a þ v þ e ðmodel 1Þ where y is a vector of individual phenotypes (length n = 2411), β is a vector of fixed effects accounting for cohort (4 or ) and smolt age, X is the corresponding design matrix, a is a vector of random polygenic effects (length n), v is a vector of random QTL effect (length n), and e is a vector of residuals (length n). The variance covariance matrix for the random QTL effect was estimated via a deterministic method (Pong-Wong et al., 1) as the Identity By Descent (IBD) matrix at each genomic position tested for QTL. The parameters of each model were estimated by an average information restricted maximum likelihood algorithm (Johnson and Thompson, 199) as implemented by Rönnegård and Carlborg (7) in the R programming environment (Team, 13) The presence of QTLs at each genomic location was tested by LRT (Likelihood Ratio Tests): LRT ¼ 2llh ð llh 1 Þ where llh and llh 1 are the log-likelihood of the polygenic and QTL model, respectively. The significance threshold was determined by permutation (Churchill and Doerge, 1994). Ten thousand permutations were performed at centimorgan (cm) intervals on the genome. The distribution of the maximum test statistic over all analysis points for each of the shuffled analyses represents an empirical distribution of the test statistic under the null hypothesis of absence of QTL. Our and 1% significance values were thus set as the 9 and 99 percentile of the empirical distribution of the test statistic under the null hypothesis (Churchill and Doerge, 1994). When two QTLs were significantly associated with the same trait separately, a two-qtl model was fitted to determine the proportion of phenotypic variance collectively explained by the two QTLs. Estimation of allele fixation within type The variance component approach that was used for QTL detection assumed that the alleles present in the parental generation are independent, that is, inherited from a different ancestor. This hypothesis is often adopted by default in variance component QTL mapping, as it is conservative with respect to the power to detect significant QTLs. However, in the present experiment, it is likely that within farmed and wild populations, some parents will be related and share some alleles from a common ancestor. To investigate possible degree of allelic fixation within types, we used an extension of the variance component approach where the alleles within each types are correlated by a coefficient ρ to be estimated. For each detected QTL, the flexible intercross analysis method (Ronnegard et al., 8) was employed to estimate potential allelic fixation within type ρ, that is, the probability that all parental alleles within wild or within farmed population are inherited from a common ancestor. This method relies on a different estimation of the IBD matrices, assuming complete fixation of the alleles within each type. First, IBD matrix P was re-calculated at each QTL position assuming fixation of the alleles within farmed type P F or within wild-type P W. Matrices were estimated from the genotype information of the 2411 individuals, then, a variance component model was fitted as y ¼ Xb þ a þ v þ u þ e ðmodel 2Þ where u is a third random variable accounting for the effect of correlation between alleles from the same type, and where the phenotypic variance can be decomposed as: varðyþ ¼Αs 2 a þ Ps2 v þðp W PÞs 2 u þ Is2 e or varðyþ ¼Αs 2 a þ Ps2 v þðp F PÞs 2 u þ Is2 e Correlation of the alleles within farmed type (ρ F )orwithinwildtype(ρ W )was then estimated as r ¼ s2 u s (Ronnegard et al., 8). The alternative hypothesis of 2 v allelic correlation (ρ F or ρ W ) being greater than zero was tested by likelihood ratio between model 1 and model 2. The likelihood ratio was then compared with a Chi-square distribution with one degree of freedom, which corresponds to the difference in degrees of freedom between model 1 and model 2. We then performed a one-tailed test, that is, testing whether the likelihood of model 2 was greater than likelihood of model 1. Scan for genomic regions associated with mortality Previous studies of the same experimental population revealed significant differences in survival among half sibs (Skaala et al., 12), suggesting a genetic contribution to survival between egg and smolt stage. Therefore, here, we also searched for genomic regions associated with survival between egg stage and smolt migration, where the mortality rate varied between 96 and 99% among families. Because the genotype of non-surviving individual was not accessible, an additional set of individuals were simulated by gene dropping from the parental genotypes. For each sampled fish that had survived and was genotyped, a full sibling was simulated by sampling alleles from the parental gametes. Recombinations were simulated according to the linkage map in Atlantic salmon (Lien et al., 11), and the simulated full sibling was assigned a surviving status (dead or alive) according to the family survival rate (between 4 and 1%). The resulting data were then a set of 2411 observed individuals that had all survived until smolt stage, and a set of 2411 simulated individuals with surviving proportion equal to their family survival rate. The second set was thus a neutral data set assumed to represent a realization of the F1 population if no selective mortality occurs in the river. Simulated and observed data were then merged to crate a 4822 individuals data set, and the influence of genotype on survival was investigated by fitting a hierarchical generalized linear model at each of the 272 genotyped marker positions with the R package hglm (Ronnegard et al., ). At each genomic position, a binomial hierarchical generalized linear model was fitted with survival status (dead or alive) as binary response to one fixed full sib family effect and one random genetic effect. The dispersion coefficient of the random genetic effect was kept as an indicator of the genetic contribution to the variance in survival. The incidence matrix Z for the genetic effect was built in a similar manner as the IBD matrix calculated for QTL analyses, and consisted of the first N columns of the gametic IBD matrix, where N is the number of gametes in the parental generation. For genomic regions significantly associated with mortality, a five-markers haplotype window was reconstructed, and the number of parental haplotypes observed in the F1 population was compared with those expected under the neutral hypothesis of no selective mortality in the river via chi-square test. RESULTS QTL scan Based on the information from 272 SNPs, a genome-wide QTL scan was conducted at 1 cm intervals for three phenotypic traits: body weight (W), body length (L) and CF. Permutation testing indicated that and 1% significance threshold were achieved with an LRT value of 8.8 and 13.8, respectively. The results from the three QTL scans are represented in Figures 1 3 for W, L and CF, respectively. One QTL was significant at 1%

4 2 chromosome: % significance % significance LRT value Cumulative genomic position (cm) Figure 1 Genome wide scan every 1 cm of the female recombination map for QTL affecting length. Horizontal dashed line and pointed line indicate the and 1% genome-wide significance threshold, respectively. Vertical lines separate chromosomes. 2 chromosome: % significance % significance LRT value Cumulative genomic position (cm) Figure 2 Genome-wide scan every 1cM of the female recombination map for QTL affecting weight. Horizontal dashed line and pointed line indicate the and 1% genome-wide significance threshold, respectively. Vertical lines separate chromosomes. threshold on chromosome 11, and was highly correlated with all the three phenotypes (Figures 1 3). A second QTL on chromosome 2 was also highly correlated with W and L (Figures 1 and 2), matching 1% significance threshold for length (Figure 1), and % significance for body weight (Figure 2). Additionally, QTL scan for CF revealed one original QTL on chromosome that matched 1% significance threshold. This last QTL was not linked to W or L individually (Figure 3). Two QTLs situated on chromosomes 2 and 11 (Figures 1 and 2), explained respectively 8.4 and 7.7% of the length variance, and.6 and.% of the weight variance (Table 2). Two CF QTLs were detected on chromosomes 11 and (Figure 3), and explained.7 and 4.6% of the variance, respectively (Table 2).

5 1 2 chromosome: % significance % significance LRT value Cumulative genomic position (cm) Figure 3 Genome-wide scan every 1cM of the female recombination map for QTL affecting CF. Horizontal dashed line and pointed line indicate the and 1% genome-wide significance threshold, respectively. Vertical lines separate chromosomes. Table 2 Position and associated variance of QTL affecting weight (W), length (L) and condition factor (CF) Phenotype Linkage group Position confidence interval (cm) on the female map Position confidence interval (cm) on the sex averaged map Proportion of phenotype variance (%) Collective proportion of phenotype variance (%) W W L L CF CF Abbreviation: QTL, quantitative trait loci. No correlation was found among QTLs linked to the same trait. Therefore, the phenotypic variance explained by two QTLs was nearly cumulative. A two QTL model revealed that chromosome 2 and 11 QTLs were collectively responsible for 14.8% of the variance of L (Table 2). Similarly, QTLs on chromosomes 2 and 11 were responsible for 11.2% of the variance of W, while QTLs on chromosome 11 and were responsible for 9.8% of the variance of CF (Table 2). Allelic fixation within type Estimating the degree of fixation of the alleles within the parental generation revealed a strong correlation pattern among alleles from the farmed parents (ρ F =.92 Po.1) under the weight and length QTL on chromosome 2 (Table 3). No significant correlation could be established among the alleles from the wild parents on the same QTL. Moderate correlation was also detected for the alleles from the wild parents (ρ W =.71 Po.1) under the weight and length QTL on chromosome 11 (Table 3), whereas no significant correlation could be established for the alleles from the farmed parents on the same QTL. Moderate allele correlation was also detected among alleles from both the farmed and wild populations (ρ F =.46 Po., ρ W =.3 Po.) for the CF QTL on chromosome. On the polygenic scale, the correlation among alleles was not significantly different from zero in any of the parental lines. However, the estimate of allelic fixation was constantly smaller among wild alleles than among farm alleles (Table 3), suggesting a generally higher allelic diversity within wild population than within farm strains for the loci contributing to the studied phenotypes. Scan for genomic regions associated with mortality The presence of locus associated with survival between egg and smolt stage was investigated by comparing the genotypes of observed surviving individuals with the genotypes of simulated dead individuals in a binomial hierarchical generalized linear model framework. From this analysis, one large genomic region covering chromosome 2 was significantly linked to the variation in survival (Po.) (Figure 4). The individual effect of each parental gamete was estimated after reconstructing a five-markers haplotype under mortality-associated region on chromosome 2. Comparing the observed number of parental haplotypes in the F1 population with those expected under the null hypothesis revealed that one wild male individual had a strong contribution to the survival variance. This individual _M2 had indeed a significant and heterogeneous contribution to the survival

6 2 Table 3 Estimated allelic fixation within type at QTL on chromosome (Chr.) 2, chromosome 11 and at the polygenic scale (P) Phenotype Weight Length Condition factor Chr.2 Chr.11 P Chr.2 Chr.11 P Chr.2 Chr.11 P Wild.8 (n.s.).71*.2 (n.s.).1 (n.s.).46 (n.s.).1 (n.s.).2 (n.s.).3*.1 (n.s.) Farm.92***.1 (n.s.). (n.s.).97***.1 (n.s.).31 (n.s.).1 (n.s.).46*.12 (n.s.) Abbreviation: QTL, quantitative trait loci. ***Po.1, **Po.1, *Po., n.s., Fixation not significantly different from zero % significance Genetic variance Cumulative genomic position (cm) Figure 4 Genome-wide scan every 1 cm of the female recombination map for QTL affecting mortality. Horizontal dashed line and pointed line indicate the and 1% genome-wide significance threshold, respectively. Vertical lines separate chromosomes. Table 4 Haplotypes at five markers a, on the genomic region of chromosome 2 associated with survival 4_L12 (P =.1) 4_L18 (P =.1) _M2 (P =. 8 ) _M9 (P =.1) Beneficial haplotype (6) (3) (84) (9) Alternative haplotype (17) (14) (11) () Haplotypes are given for the four individuals that most contributed to the survival variance. The number between brackets indicates the number of living offspring that inherited the corresponding haplotype. P-values correspond to the chi-square test comparing the repartition of parental haplotypes among surviving offspring with the theoretical number if no selective mortality occurred in the river. a ESTNV_33243_92, BASS13_B7_B7_761, GCR_cBin3446_Ctg1_88, ESTV_2172_136 and ESTNV_3671_19. variance, with two alleles having opposite effects in the survival of the offspring. From the 9 surviving offspring of _M2, 84 inherited the favorable allele, while only 11 inherited the alternative allele (Table 4). In addition to _M2, three wild males, 4_L12, 4_L18 and _M9 also had a significant contribution to the variance of survival. In the surviving offspring of those parents, we observed more than a twofold difference between the number of favorable haplotype and the alternative one (Table 4). DISCUSSION In the present study, we show that QTLs could indeed be identified for all four studied phenotypes, and that the QTLs linked to body size and shape coincided with QTLs for the same traits previously identified in farmed environments. In addition, there was evidence for reduced genetic variation in some of QTLs in farmed fish, indicating possible selective sweeps as a result of the domestication process and selection program. One genomic region on chromosome 2 was strongly associated with mortality in the river stage, illustrating thus a significant genetic contribution to a key element of the fitness. The results presented here provide important information about fitness variation among wild and farmed salmonid fishes and indicate that artificial selection affects ecologically important traits when farmed fish are reintroduced into a natural setting. The detection of survival QTL is also an important step toward a better understanding

7 3 of the genetic architecture of salmonid fitness in the natural environment, and a better prediction of the evolutionary trajectories of wild populations invaded by farm escapees. Ecological relevance of the studied traits Three of the studied traits (body length, weight and CF) are related to growth. After generations of selection in aquaculture for commercially important traits, farmed strains grow several times faster than wild salmons under controlled hatchery conditions, revealing large genetic differences as a result of domestication (Solberg et al., 13). Such difference in growth is, to a large extent, achieved through a more intense feeding behavior in farmed salmon. Offspring of escaped farmed salmon may therefore have a competitive advantage in natural environments relative to wild salmon, at least through the early (fry and parr) part of their life cycle (McGinnity et al., 3).Yet,intensive feeding behavior in aquaculture environments is achieved at the cost of other traits that are ecologically important in the wild, such as shyness and predator avoidance (Einum and Fleming, 1997). To summarize, the available evidence suggests that farmed salmon may perform better than wild salmon at some life stages and worse at others, with a net result of decreased population size (McGinnity et al., 3). Although farmed and wild salmon differ in a number of biological traits (Jonsson and Jonsson, 6), feeding behavior and growth rate are probably linked to farm VS wild differences, due to directional selection for those traits in hatchery. It is also likely that the studied traits are linked with fitness differences between the two groups, due to competition for food and predator avoidance. It is however important to note that fitness is a highly complex trait that is influenced by a number of genetic factor, some of which, like for example immune capacity, are not considered in the present work. In addition, the environmental component of fitness is expected to be large, for example, farm fish fitness in the wild has been shown to benefit from enrichment of rearing conditions in hatchery (Roberts et al., 14). Growth and survival are also expected to result from a mixture of polygenic and environmental factors. The environmental component is expected to be particularly important in the present study where the environment is heterogeneous and uncontrolled. The effect of reported QTLs range between 4.8 and 8.4% of the phenotypic variance, with cumulative effect of %. This indicates that growth at the river stage is determined by a combination of environmental effects jointly with several genes with small individual contributions, rather than a few genes with large contributions. Condition factor is a function of both fish s length and weight, and cannot be predicted from weight or length alone. This phenotype is nevertheless a very relevant variable to study as it may be linked to fitness. Among fish of similar weight, a large value of CF reflects a robust body shape with a shorter distance between head and tail compared to fish with small CF value that have a more slender shape and longer head to tail distance. Body conformation may thus be linked to adaptation to living conditions and life history trait, such as migratory behavior (Pulcini et al., 13) or sexual selection (Roberts et al., 14). In the studied population, the correlation between CF and weight and CF and length was respectively. and.22, while weight-length correlation was.8. This correlation between the studied phenotypes is reflected in the results of the QTL scan where QTLs linked to weight and length were nearly identical, whereas the scan for CF revealed a region on chromosome that was linked to CF, but was not linked to weight nor length. Those results partially overlap with those from a former study (Reid et al., ) where signal for QTL linked to weight and CF was found on salmon linkage group 11. QTL identification and dependence of the environment The Guddal river does not host any natural population of salmon. Thus, in the experimental study upon which these QTL analyses are based (Skaala et al., 12), the wild population originated from another river located on the west of Norway (Laerdal). While this donor population cannot be specifically regarded as adapted to the river Guddal, the offspring resulting from the wild experimental crosses were nevertheless expected to perform better in the river than the farmed strain that had been subject to approximately generations of domestication selection in the absence of predation and competition for resources. We assumed here that the joint study of the farmed strain, the wild Laerdal population and their F1 hybrids in the river Guddal provided a suitable experimental setting in which to study the genetic basis of adaptation in the natural environment. Several QTLs linked to weight, length and CF were detected on chromosomes 2, 11 and. These identified regions overlap with the results of previous QTL studies performed with different populations of farmed salmon reared in an aquaculture environment (Reid et al., ; Baranski et al., ). The proportion of variance explained by QTLs may vary depending on the statistical method for QTL detection. Here, with variance component QTL mapping, the estimated variance contribution of each QTL ranged from 4.6 to 8.4%, which was comparable to those from previous studies where QTLs explained 3 6% of weight and CF variance using half-sib regression analysis (Baranski et al., ), or 11 17% of weight and CF variance (Reid et al., ). It is well known that QTLs identified for a given trait may not be consistent across different populations and environments, the former due to the possibility of parallel evolution and the latter due to genotype environment interactions (Slate et al., ). Our study provides some evidence that the same QTLs underlie the same traits in different populations, though the number of involved populations is small. This result is not surprising given that Norwegian commercial salmon strains were initially founded in the start of the 197s by individuals from local wild populations (Gjedrem et al., 1991). Other studies that have found different genetic architecture for the same traits in different populations have studied more genetically diverged population with divergent geographical origin (Thurber et al., 13). Here, QTL detection relied on variance component linkage mapping, in a population that consisted of two generations (parents and offspring) of Atlantic salmon from either farmed or wild origin. In such populations, the second generation of intercross (F2) is usually a more appropriate mapping population as it gathers the maximum genetic polymorphism. However, because the present parent populations are not inbred, it is also possible to use the first-generation intercross (F1) as mapping population. The statistic model that was employed for QTL detection was adapted to this particular situation as it assumes that all alleles present in the parental generation are inherited from a different ancestor. This approach is thus particularly suitable for the analysis of outbred populations. It is however expected to be conservative, as it does not make use of the expected genetic similarities within parental lines. This approach nevertheless identified several QTL linked to body size and body conformation. For each of these QTLs, the flexible intercross analysis (Ronnegard et al., 8) method was employed to estimate a posteriori genetic similarities within parental lines. This estimation indicated higher genetic diversity within wild population than within farm strain, probably revealing the consequence of selection and/or genetic drift within the farm strain.

8 4 In addition, the QTL chromosome 2 displayed a stronger reduction of the genetic diversity than observed at the polygenic level. This may reflect a selective sweep due to directional selection on chromosome 2 in hatchery conditions. The use of a first-generation intercross (F1) also implied some limitations in the search for survival QTL. It was already established that in this data set, the families had significant differences in the number of offspring surviving until smolt migration stage (Skaala et al., 12). The model utilized to detect genomic regions associated with survival was thus correcting for survival variation due to family effect. In this model, only heterozygous parents with gametes providing significantly different survival rate to the offspring had a significant contribution to the genetic component of survival. This is expected to considerably reduce the number of individuals that contribute to the genetic component of survival, and thus reduce the power of detection. Nevertheless, this approach allowed the detection of one genomic region on chromosome 2 that was significantly linked to the survival rate in the population. As expected, the main contributor of mortality variance was a wild parent bearing two alleles with significantly different effect on offspring survival. In this particular case, the beneficial allele was found in 84 of the surviving offspring while the alternative allele was only present in 11 individuals on the F1 generation. As reported in Table 4, in chromosome 2, the main contributors to the survival variance were all wild males. This may again indicate a greater genetic diversity in the wild population. The reason why males would have a greater contribution than females is unclear. There are however several experimental constraints that could explain this. First, the same males were used in the wild-wild and farm-wild crosses. As a consequence, wild males have on average twice as many offspring than farm males, and females from both types. This larger sample size logically gives greater power to detect survival discrepancies in the offspring of wild males. Second, in salmon, the chromosome recombinations are more frequent in females than in males (Lien et al., 11), making thus the haplotype reconstruction more accurate in males than in females. As QTL areas are generally broad, it is not possible to assess whether the co-location of growth and survival QTL on chromosome 2 is coincidental, or whether the two phenotypes are affected by the same locus. Correlation between growth and survival has however been documented in salmonids (Vehvilainen et al., 12).Further investigation using an F2 intercross or association mapping with higher marker density should allow a better estimation of the genetic variability linked to survival under that locus. It is also important to note that incomplete sampling could potentially affect the results on mortality if a given family or type is more likely to be trapped than the others. However, the Wolf trap (Millis, 1991) is a systematic sampling method that is not likely to capture a certain type of fish due to body size, behavior or swimming ability. We thus assume that if the sampling is incomplete, the captured population is a representative sample of the families and types of fish that survived and migrated down the Guddal river during the experiment. CONCLUSIONS This study investigates the genetic architecture of ecologically important traits that underlie fitness differences between wild and farmed salmonids in the natural environment. The results provide evidence for the consistency of QTLs across contrasting captive and wild environments, and particularly for one of the QTLs where strong selection may have occurred in aquaculture. The environmental independence of the QTLs and thereby low genotype environment interaction further suggest that artificial selection in the aquaculture environment leading to phenotypic changes will have similar phenotypic effects in offspring of escaped farmed salmon in the wild. Therefore, selective changes in farmed salmon are expected to have direct influence not only on the genotypes but also on phenotypes of wild salmon populations subject to spawning intrusion by farmed fish. This reinforces the general conception that interbreeding between farmed and wild salmon represents an important conservation problem, and that avoidance of escapes from aquaculture should be highly prioritized. DATA ARCHIVING Data available from the Dryad Digital Repository: CONFLICT OF INTEREST The authors declare no conflict of interest. ACKNOWLEDGEMENTS This study was financed by a grant from the Norwegian Research council (NFR) in the project MENTOR, and the Swedish Research Council ( ) for financial support to XS. We would like to acknowledge the assistance of Anne-Grete Sørvik for help in plucking the samples for SNP genotyping. Allendorf FW, Leary RF, Spruell P, Wenburg JK (1). The problems with hybrids: setting conservation guidelines. Trends Ecol Evol 16: Baranski M, Moen T, Vage DI (). Mapping of quantitative trait loci for flesh colour and growth traits in Atlantic salmon (Salmo salar). Genet Sel Evol 42: 17. Belyaev DK, Ruvinsky AO, Trut LN (1981). Inherited activation-inactivation of the star gene in foxes: its bearing on the problem of domestication. JHered72: Bourret V, Kent MP, Primmer CR, Vasemagi A, Karlsson S, Hindar K et al. (13). SNParray reveals genome-wide patterns of geographical and potential adaptive divergence across the natural range of Atlantic salmon (Salmo salar). Mol Ecol 22: Carlson SM, Seamons TR (8). A review of quantitative genetic components of fitness in salmonids: implications for adaptation to future change. Evol Appl 1: Churchill GA, Doerge RW (1994). Empirical threshold values for quantitative trait mapping. Genetics 138: Clifford SL, McGinnity P, Ferguson A (1998). Genetic changes in an Atlantic salmon population resulting from escaped juvenile farm salmon. J Fish Biol 2: Darwin C (1868). The Variation of Animals and Plants under Domestication. John Murray: London. Debes PV, Normandeau E, Fraser DJ, Bernatchez L, Hutchings JA (12). Differences in transcription levels among wild, domesticated, and hybrid Atlantic salmon (Salmo salar) from two environments. Mol Ecol 21: Einum S, Fleming IA (1997). Genetic divergence and interactions in the wild among native, farmed and hybrid Atlantic salmon. JFishBiol: Fischer J, Lindenmayer DB (). An assessment of the published results of animal relocations. Biol Conserv 96: Fleming IA, Einum S (1997). Experimental tests of genetic divergence of farmed from wild Atlantic salmon due to domestication. ICES J Mar Sci J Cons 4: Garcia de Leaniz C, Fleming IA, Einum S, Verspoor E, Jordan WC, Consuegra S et al. (7). A critical review of adaptive genetic variation in Atlantic salmon: implications for conservation. Biol Rev Camb Philos Soc 82: George AW, Visscher PM, Haley CS (). Mapping quantitative trait loci in complex pedigrees: a two-step variance component approach. Genetics 16: Gjedrem T, Gjøen HM, Gjerde B (1991). Genetic origin of Norwegian farmed Atlantic salmon. Aquaculture 98: 41. Glover K, Pertoldi C, Besnier F, Wennevik V, Kent M, Skaala O (13). Atlantic salmon populations invaded by farmed escapees: quantifying genetic introgression with a Bayesian approach and SNPs. BMC Genet 14: 74. Houston RD, Bishop SC, Hamilton A, Guy DR, Tinch AE, Taggart JB et al. (9). Detection of QTL affecting harvest traits in a commercial Atlantic salmon population. Anim Genet 4: Johnson DL, Thompson R (199). Restricted maximum likelihood estimation of variance components for univariate animal models using sparse matrix techniques and average information. JDairySci78: Jonsson B, Jonsson N (6). Cultured Atlantic salmon in nature: a review of their ecology and interaction with wild fish. ICES J Mar Sci J Cons 63: Karlsson S, Moen T, Lien S, Glover KA, Hindar K (11). Generic genetic differences between farmed and wild Atlantic salmon identified from a 7K SNP-chip. Mol Ecol Resour 11 (Suppl 1):

9 Koljonen M-L, Tähtinen J, Säisä M, Koskiniemi J (2). Maintenance of genetic diversity of Atlantic salmon (Salmo salar) by captive breeding programmes and the geographic distribution of microsatellite variation. Aquaculture 212: Lewin HA (9). Genetics. It s abull s market.science 324: Lien S, Gidskehaug L, Moen T, Hayes B, Berg P, Davidson W et al. (11). A dense SNPbased linkage map for Atlantic salmon (Salmo salar) reveals extended chromosome homeologies and striking differences in sex-specific recombination patterns. BMC Genomics 12: 61. Malek TB, Boughman JW, Dworkin I, Peichel CL (12). Admixture mapping of male nuptial colour and body shape in a recently formed hybrid population of threespine stickleback. Mol Ecol 21: Martinez V, Dettleff P, Lopez P, Fernandez G, Jedlicki A, Yañez JM et al. (13). Assessing footprints of selection in commercial Atlantic salmon populations using microsatellite data. Anim Genet 44: McGinnity P, Prodöhl P, Ferguson A, Hynes R, Maoiléidigh Nó, Baker N et al. (3). Fitness reduction and potential extinction of wild populations of Atlantic salmon, Salmo salar, as a result of interactions with escaped farm salmon. Proc R Soc Lond B Biol Sci 27: McGinnity P, Stone C, Taggart JB, Cooke D, Cotter D, Hynes R et al. (1997). Genetic impact of escaped farmed Atlantic salmon (Salmo salar L.) on native populations: use of DNA profiling to assess freshwater performance of wild, farmed, and hybrid progeny in a natural river environment. ICES J Mar Sci J Cons 4: Millis D (1991). Ecology and Management of Atlantic Salmon. illustrated Springer Science & Business Media O Reilly PT, Hamilton LC, McConnell SK, Wright JM (1996). Rapid analysis of genetic variation in Atlantic salmon (Salmo salar) by PCR multiplexing of dinucleotide and tetranucleotide microsatellites. Can J Fish Aquat Sci 3: Pong-Wong R, George AW, Woolliams JA, Haley CS (1). A simple and rapid method for calculating identity-by-descent matrices using multiple markers. Genet Sel Evol 33: Price EO (1999). Behavioral development in animals undergoing domestication. Appl Anim Behav Sci 6: Price EO, King JA (1968). Domestication and adaptation. In: Hafez ESE (Ed) Adaptation of Domestic Animals. Lea and Febiger: Philadelphia. pp Pulcini D, Wheeler PA, Cataudella S, Russo T, Thorgaard GH (13). Domestication shapes morphology in rainbow trout Oncorhynchus mykiss. J Fish Biol 82: Reid DP, Szanto A, Glebe B, Danzmann RG, Ferguson MM (). QTL for body weight and condition factor in Atlantic salmon (Salmo salar): comparative analysis with rainbow trout (Oncorhynchus mykiss) and Arctic charr (Salvelinus alpinus). Hered Edinb 94: Rhymer J, Simberloff D (1996). Extinction by hybridization and introgression. Annu Rev Ecol Syst 27: Roberts LJ, Taylor J, Gough PJ, Forman DW, Garcia de Leaniz C (14). Silver spoons in the rough: can environmental enrichment improve survival of hatchery Atlantic salmon Salmo salar in the wild? J Fish Biol 8: Ronnegard L, Besnier F, Carlborg O (8). An improved method for quantitative trait loci detection and identification of within-line segregation in F2 intercross designs. Genetics 178: Rönnegård L, Carlborg O (7). Separation of base allele and sampling term effects gives new insights in variance component QTL analysis. BMC Genet 8: 1. Ronnegard L, Shen X, Alam M (). hglm: A package for fitting hierarchical generalized linear models. RJ2: 28. Skaala Ø, Glover KA, Barlaup BT, Sv\aasand T, Besnier F, Hansen MM et al. (12). Performance of farmed, hybrid, and wild Atlantic salmon (Salmo salar) families in a natural river environment. Can J Fish Aquat Sci 69: Skaala Ø, Høyheim B, Glover K, Dahle G (4). Microsatellite analysis in domesticated and wild Atlantic salmon (Salmo salar L.): allelic diversity and identification of individuals. Aquaculture 24: Slate J, Santure AW, Feulner PGD, Brown EA, Ball AD, Johnston SE et al. (). Genome mapping in intensively studied wild vertebrate populations. Trends Genet 26: Slate J, Visscher PM, MacGregor S, Stevens D, Tate ML, Pemberton JM (2). A genome scan for quantitative trait loci in a wild population of red deer (Cervus elaphus). Genetics 162: Slettan A, Olsaker I, Lie O (199). Atlantic salmon, Salmo-salar, microsatellites at the SSOSL2, SSOSL8, SSOSL311, SSOSL417 loci. Anim Genet 26: Solberg MF, Skaala Ø, Nilsen F, Glover KA (13). Does domestication cause changes in growth reaction norms? a study of farmed, wild and hybrid atlantic salmon families exposed to environmental stress. PLoS ONE 8: e4469. Taggart JB (7). FAP: an exclusion-based parental assignment program with enhanced predictive functions. Mol Ecol Notes 7: Team RC (13). R: A Language and Environment for Statistical Computing. Vienna, Austria. Thurber CS, Jia MH, Jia Y, Caicedo AL (13). Similar traits, different genes? Examining convergent evolution in related weedy rice populations. Mol Ecol 22: Vehvilainen H, Kause A, Kuukka-Anttila H, Koskinen H, Paananen T (12). Untangling the positive genetic correlation between rainbow trout growth and survival. Evol Appl : Verspoor E, Beardmore JA, Consuegra S, García de Leániz C, Hindar K, Jordan WC et al. (). Population structure in the Atlantic salmon: insights from 4 years of research into genetic protein variation. J Fish Biol 67: 3 4. Webb AA, Cullen CL (). Coat color and coat color pattern-related neurologic and neuro-ophthalmic diseases. Can Vet J 1: This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4. International License. The images or other third party material in this article are included in the article s Creative Commons license, unless indicated otherwise in the credit line; if the material is not included under the Creative Commons license, users will need to obtain permission from the license holder to reproduce the material. To view a copy of this license, visit by-nc-sa/4./ Supplementary Information accompanies this paper on website (

Ecological and evolutionary interactions between farmed and wild Atlantic salmon

Ecological and evolutionary interactions between farmed and wild Atlantic salmon Ecological and evolutionary interactions between farmed and wild Atlantic salmon Kjetil Hindar, research director Sten Karlsson, Ola Diserud, Peder Fiske, Geir Bolstad NINA, Trondheim Outline Farmed and

More information

Thermal and ph tolerance of farmed, wild and first generation farmed-wild hybrid salmon (Salmo salar)

Thermal and ph tolerance of farmed, wild and first generation farmed-wild hybrid salmon (Salmo salar) Thermal and ph tolerance of farmed, wild and first generation farmed-wild hybrid salmon (Salmo salar) D. Hamoutene, L. Lush, I. Costa, K. Burt, J. Perez-Casanova, J. Caines Fisheries and Oceans Canada,

More information

Lecture 9. QTL Mapping 2: Outbred Populations

Lecture 9. QTL Mapping 2: Outbred Populations Lecture 9 QTL Mapping 2: Outbred Populations Bruce Walsh. Aug 2004. Royal Veterinary and Agricultural University, Denmark The major difference between QTL analysis using inbred-line crosses vs. outbred

More information

Lecture WS Evolutionary Genetics Part I 1

Lecture WS Evolutionary Genetics Part I 1 Quantitative genetics Quantitative genetics is the study of the inheritance of quantitative/continuous phenotypic traits, like human height and body size, grain colour in winter wheat or beak depth in

More information

Major questions of evolutionary genetics. Experimental tools of evolutionary genetics. Theoretical population genetics.

Major questions of evolutionary genetics. Experimental tools of evolutionary genetics. Theoretical population genetics. Evolutionary Genetics (for Encyclopedia of Biodiversity) Sergey Gavrilets Departments of Ecology and Evolutionary Biology and Mathematics, University of Tennessee, Knoxville, TN 37996-6 USA Evolutionary

More information

(Write your name on every page. One point will be deducted for every page without your name!)

(Write your name on every page. One point will be deducted for every page without your name!) POPULATION GENETICS AND MICROEVOLUTIONARY THEORY FINAL EXAMINATION (Write your name on every page. One point will be deducted for every page without your name!) 1. Briefly define (5 points each): a) Average

More information

Microsatellites as genetic tools for monitoring escapes and introgression

Microsatellites as genetic tools for monitoring escapes and introgression Microsatellites as genetic tools for monitoring escapes and introgression Alexander TRIANTAFYLLIDIS & Paulo A. PRODÖHL What are microsatellites? Microsatellites (SSR Simple Sequence Repeats) The repeat

More information

Adaptation and genetics. Block course Zoology & Evolution 2013, Daniel Berner

Adaptation and genetics. Block course Zoology & Evolution 2013, Daniel Berner Adaptation and genetics Block course Zoology & Evolution 2013, Daniel Berner 2 Conceptual framework Evolutionary biology tries to understand the mechanisms that lead from environmental variation to biological

More information

Prediction of the Confidence Interval of Quantitative Trait Loci Location

Prediction of the Confidence Interval of Quantitative Trait Loci Location Behavior Genetics, Vol. 34, No. 4, July 2004 ( 2004) Prediction of the Confidence Interval of Quantitative Trait Loci Location Peter M. Visscher 1,3 and Mike E. Goddard 2 Received 4 Sept. 2003 Final 28

More information

CONSERVATION AND THE GENETICS OF POPULATIONS

CONSERVATION AND THE GENETICS OF POPULATIONS CONSERVATION AND THE GENETICS OF POPULATIONS FredW.Allendorf University of Montana and Victoria University of Wellington and Gordon Luikart Universite Joseph Fourier, CNRS and University of Montana With

More information

Mutation, Selection, Gene Flow, Genetic Drift, and Nonrandom Mating Results in Evolution

Mutation, Selection, Gene Flow, Genetic Drift, and Nonrandom Mating Results in Evolution Mutation, Selection, Gene Flow, Genetic Drift, and Nonrandom Mating Results in Evolution 15.2 Intro In biology, evolution refers specifically to changes in the genetic makeup of populations over time.

More information

WHAT IS BIOLOGICAL DIVERSITY?

WHAT IS BIOLOGICAL DIVERSITY? WHAT IS BIOLOGICAL DIVERSITY? Biological diversity or biodiversity is the variety of life - the wealth of life forms found on earth. 9 WHAT IS BIOLOGICAL DIVERSITY? Wilcox s (1984) definition: Biological

More information

Gene mapping in model organisms

Gene mapping in model organisms Gene mapping in model organisms Karl W Broman Department of Biostatistics Johns Hopkins University http://www.biostat.jhsph.edu/~kbroman Goal Identify genes that contribute to common human diseases. 2

More information

Reproduction and Evolution Practice Exam

Reproduction and Evolution Practice Exam Reproduction and Evolution Practice Exam Topics: Genetic concepts from the lecture notes including; o Mitosis and Meiosis, Homologous Chromosomes, Haploid vs Diploid cells Reproductive Strategies Heaviest

More information

Chapter 5 Evolution of Biodiversity. Sunday, October 1, 17

Chapter 5 Evolution of Biodiversity. Sunday, October 1, 17 Chapter 5 Evolution of Biodiversity CHAPTER INTRO: The Dung of the Devil Read and Answer Questions Provided Module 14 The Biodiversity of Earth After reading this module you should be able to understand

More information

Existing modelling studies on shellfish

Existing modelling studies on shellfish Existing modelling studies on shellfish Laboratoire Ressources Halieutiques IFREMER Port-en-Bessin, France Worldwide production of cultured shellfish GENIMPACT February 2007 Main species and producers

More information

Genetics: the Complex and Hidden, Missing Dimension in Successful Fisheries Management

Genetics: the Complex and Hidden, Missing Dimension in Successful Fisheries Management Photo Credit: David Hay or Genetics: the Complex and Hidden, Missing Dimension in Successful Fisheries Management Photo Credit: David Hay Eric Verspoor Rivers and Lochs Institute Photo Credit: David Hay

More information

BIOL EVOLUTION OF QUANTITATIVE CHARACTERS

BIOL EVOLUTION OF QUANTITATIVE CHARACTERS 1 BIOL2007 - EVOLUTION OF QUANTITATIVE CHARACTERS How do evolutionary biologists measure variation in a typical quantitative character? Let s use beak size in birds as a typical example. Phenotypic variation

More information

Evolution of phenotypic traits

Evolution of phenotypic traits Quantitative genetics Evolution of phenotypic traits Very few phenotypic traits are controlled by one locus, as in our previous discussion of genetics and evolution Quantitative genetics considers characters

More information

Statistical issues in QTL mapping in mice

Statistical issues in QTL mapping in mice Statistical issues in QTL mapping in mice Karl W Broman Department of Biostatistics Johns Hopkins University http://www.biostat.jhsph.edu/~kbroman Outline Overview of QTL mapping The X chromosome Mapping

More information

Estimation of Parameters in Random. Effect Models with Incidence Matrix. Uncertainty

Estimation of Parameters in Random. Effect Models with Incidence Matrix. Uncertainty Estimation of Parameters in Random Effect Models with Incidence Matrix Uncertainty Xia Shen 1,2 and Lars Rönnegård 2,3 1 The Linnaeus Centre for Bioinformatics, Uppsala University, Uppsala, Sweden; 2 School

More information

REVISION: GENETICS & EVOLUTION 20 MARCH 2013

REVISION: GENETICS & EVOLUTION 20 MARCH 2013 REVISION: GENETICS & EVOLUTION 20 MARCH 2013 Lesson Description In this lesson, we revise: The principles of Genetics including monohybrid crosses Sex linked traits and how to use a pedigree chart The

More information

Genetic Interactions Between Cultured and Wild Fish Stocks

Genetic Interactions Between Cultured and Wild Fish Stocks Genetic Interactions Between Cultured and Wild Fish Stocks Considerations for the Genetic Management of Offshore Aquaculture Michael D. Tringali, Ph.D. Research Scientist Florida Fish and Wildlife Conservation

More information

Untitled Document. A. antibiotics B. cell structure C. DNA structure D. sterile procedures

Untitled Document. A. antibiotics B. cell structure C. DNA structure D. sterile procedures Name: Date: 1. The discovery of which of the following has most directly led to advances in the identification of suspects in criminal investigations and in the identification of genetic diseases? A. antibiotics

More information

Science Unit Learning Summary

Science Unit Learning Summary Learning Summary Inheritance, variation and evolution Content Sexual and asexual reproduction. Meiosis leads to non-identical cells being formed while mitosis leads to identical cells being formed. In

More information

Mate choice: hatchery vs. wild, mechanisms, current research and what s next. OHRC September 19th, 2011 Amelia Whitcomb Oregon State University

Mate choice: hatchery vs. wild, mechanisms, current research and what s next. OHRC September 19th, 2011 Amelia Whitcomb Oregon State University Mate choice: hatchery vs. wild, mechanisms, current research and what s next OHRC September 19th, 2011 Amelia Whitcomb Oregon State University Why is mate choice interesting? Hatchery fish are less fit

More information

The Mechanisms of Evolution

The Mechanisms of Evolution The Mechanisms of Evolution Figure.1 Darwin and the Voyage of the Beagle (Part 1) 2/8/2006 Dr. Michod Intro Biology 182 (PP 3) 4 The Mechanisms of Evolution Charles Darwin s Theory of Evolution Genetic

More information

CHAPTER 23 THE EVOLUTIONS OF POPULATIONS. Section C: Genetic Variation, the Substrate for Natural Selection

CHAPTER 23 THE EVOLUTIONS OF POPULATIONS. Section C: Genetic Variation, the Substrate for Natural Selection CHAPTER 23 THE EVOLUTIONS OF POPULATIONS Section C: Genetic Variation, the Substrate for Natural Selection 1. Genetic variation occurs within and between populations 2. Mutation and sexual recombination

More information

Biology 1 Spring 2010 Summative Exam

Biology 1 Spring 2010 Summative Exam Biology 1 Spring 2010 Summative Exam Short Answer USING SCIENCE SKILLS The pedigree shows the inheritance of free earlobes and attached earlobes in five generations of a family. Attached earlobes are caused

More information

UNIT V. Chapter 11 Evolution of Populations. Pre-AP Biology

UNIT V. Chapter 11 Evolution of Populations. Pre-AP Biology UNIT V Chapter 11 Evolution of Populations UNIT 4: EVOLUTION Chapter 11: The Evolution of Populations I. Genetic Variation Within Populations (11.1) A. Genetic variation in a population increases the chance

More information

AP Biology Evolution Review Slides

AP Biology Evolution Review Slides AP Biology Evolution Review Slides How would one go about studying the evolution of a tetrapod limb from a fish s fin? Compare limb/fin structure of existing related species of fish to tetrapods Figure

More information

Contents PART 1. 1 Speciation, Adaptive Radiation, and Evolution 3. 2 Daphne Finches: A Question of Size Heritable Variation 41

Contents PART 1. 1 Speciation, Adaptive Radiation, and Evolution 3. 2 Daphne Finches: A Question of Size Heritable Variation 41 Contents List of Illustrations List of Tables List of Boxes Preface xvii xxiii xxv xxvii PART 1 ear ly problems, ea r ly solutions 1 1 Speciation, Adaptive Radiation, and Evolution 3 Introduction 3 Adaptive

More information

Lecture 11: Multiple trait models for QTL analysis

Lecture 11: Multiple trait models for QTL analysis Lecture 11: Multiple trait models for QTL analysis Julius van der Werf Multiple trait mapping of QTL...99 Increased power of QTL detection...99 Testing for linked QTL vs pleiotropic QTL...100 Multiple

More information

Classical Selection, Balancing Selection, and Neutral Mutations

Classical Selection, Balancing Selection, and Neutral Mutations Classical Selection, Balancing Selection, and Neutral Mutations Classical Selection Perspective of the Fate of Mutations All mutations are EITHER beneficial or deleterious o Beneficial mutations are selected

More information

PRINCIPLES OF MENDELIAN GENETICS APPLICABLE IN FORESTRY. by Erich Steiner 1/

PRINCIPLES OF MENDELIAN GENETICS APPLICABLE IN FORESTRY. by Erich Steiner 1/ PRINCIPLES OF MENDELIAN GENETICS APPLICABLE IN FORESTRY by Erich Steiner 1/ It is well known that the variation exhibited by living things has two components, one hereditary, the other environmental. One

More information

Population Genetics & Evolution

Population Genetics & Evolution The Theory of Evolution Mechanisms of Evolution Notes Pt. 4 Population Genetics & Evolution IMPORTANT TO REMEMBER: Populations, not individuals, evolve. Population = a group of individuals of the same

More information

NOTES CH 17 Evolution of. Populations

NOTES CH 17 Evolution of. Populations NOTES CH 17 Evolution of Vocabulary Fitness Genetic Drift Punctuated Equilibrium Gene flow Adaptive radiation Divergent evolution Convergent evolution Gradualism Populations 17.1 Genes & Variation Darwin

More information

Chapter 2 Section 1 discussed the effect of the environment on the phenotype of individuals light, population ratio, type of soil, temperature )

Chapter 2 Section 1 discussed the effect of the environment on the phenotype of individuals light, population ratio, type of soil, temperature ) Chapter 2 Section 1 discussed the effect of the environment on the phenotype of individuals light, population ratio, type of soil, temperature ) Chapter 2 Section 2: how traits are passed from the parents

More information

Evolution of Populations. Chapter 17

Evolution of Populations. Chapter 17 Evolution of Populations Chapter 17 17.1 Genes and Variation i. Introduction: Remember from previous units. Genes- Units of Heredity Variation- Genetic differences among individuals in a population. New

More information

Genotype Imputation. Biostatistics 666

Genotype Imputation. Biostatistics 666 Genotype Imputation Biostatistics 666 Previously Hidden Markov Models for Relative Pairs Linkage analysis using affected sibling pairs Estimation of pairwise relationships Identity-by-Descent Relatives

More information

IUCN Red List Process. Cormack Gates Keith Aune

IUCN Red List Process. Cormack Gates Keith Aune IUCN Red List Process Cormack Gates Keith Aune The IUCN Red List Categories and Criteria have several specific aims to provide a system that can be applied consistently by different people; to improve

More information

UNIT 8 BIOLOGY: Meiosis and Heredity Page 148

UNIT 8 BIOLOGY: Meiosis and Heredity Page 148 UNIT 8 BIOLOGY: Meiosis and Heredity Page 148 CP: CHAPTER 6, Sections 1-6; CHAPTER 7, Sections 1-4; HN: CHAPTER 11, Section 1-5 Standard B-4: The student will demonstrate an understanding of the molecular

More information

Reproduction & Recovery - Energetics

Reproduction & Recovery - Energetics Reproduction & Recovery - Energetics Iteroparity & Semelparity Iteroparity- (perennial) reproduces more than once. Semelparity- (annual) reproduces only once. 1 Crespi, B.J. and R. Teo. 2002. Comparative

More information

OVERVIEW. L5. Quantitative population genetics

OVERVIEW. L5. Quantitative population genetics L5. Quantitative population genetics OVERVIEW. L1. Approaches to ecological modelling. L2. Model parameterization and validation. L3. Stochastic models of population dynamics (math). L4. Animal movement

More information

Theory a well supported testable explanation of phenomenon occurring in the natural world.

Theory a well supported testable explanation of phenomenon occurring in the natural world. Evolution Theory of Evolution Theory a well supported testable explanation of phenomenon occurring in the natural world. Evolution the process by which modern organisms changed over time from ancient common

More information

Introduction to QTL mapping in model organisms

Introduction to QTL mapping in model organisms Introduction to QTL mapping in model organisms Karl W Broman Department of Biostatistics Johns Hopkins University kbroman@jhsph.edu www.biostat.jhsph.edu/ kbroman Outline Experiments and data Models ANOVA

More information

Ben Hecht Columbia River Inter-Tribal Fish Commission March 19, 2013

Ben Hecht Columbia River Inter-Tribal Fish Commission March 19, 2013 The Genetic Basis for the Propensity to Migrate in a Sequestered Population of Rainbow and Steelhead Trout Ben Hecht Columbia River Inter-Tribal Fish Commission March 19, 2013 Migration Cultural, ecological,

More information

5/31/2012. Speciation and macroevolution - Chapter

5/31/2012. Speciation and macroevolution - Chapter Speciation and macroevolution - Chapter Objectives: - Review meiosis -Species -Repro. Isolating mechanisms - Speciation -Is evolution always slow -Extinction How Are Populations, Genes, And Evolution Related?

More information

4. Identify one bird that would most likely compete for food with the large tree finch. Support your answer. [1]

4. Identify one bird that would most likely compete for food with the large tree finch. Support your answer. [1] Name: Topic 5B 1. A hawk has a genetic trait that gives it much better eyesight than other hawks of the same species in the same area. Explain how this could lead to evolutionary change within this species

More information

BIOL Evolution. Lecture 9

BIOL Evolution. Lecture 9 BIOL 432 - Evolution Lecture 9 J Krause et al. Nature 000, 1-4 (2010) doi:10.1038/nature08976 Selection http://www.youtube.com/watch?v=a38k mj0amhc&feature=playlist&p=61e033 F110013706&index=0&playnext=1

More information

The Origin of Species

The Origin of Species The Origin of Species Introduction A species can be defined as a group of organisms whose members can breed and produce fertile offspring, but who do not produce fertile offspring with members of other

More information

Solutions to Problem Set 4

Solutions to Problem Set 4 Question 1 Solutions to 7.014 Problem Set 4 Because you have not read much scientific literature, you decide to study the genetics of garden peas. You have two pure breeding pea strains. One that is tall

More information

Name: Hour: Teacher: ROZEMA. Inheritance & Mutations Connected to Speciation

Name: Hour: Teacher: ROZEMA. Inheritance & Mutations Connected to Speciation Name: Hour: Teacher: ROZEMA Inheritance & Mutations Connected to Speciation Let s Review What We Already Know: What Have We Learned? Lesson 26: PI 1 (Projected Image) - Human Karyotype (image from https://en.wikipedia.org/wiki/karyotype#/media/file:nhgri_human_male_karyotype.png)

More information

9 Genetic diversity and adaptation Support. AQA Biology. Genetic diversity and adaptation. Specification reference. Learning objectives.

9 Genetic diversity and adaptation Support. AQA Biology. Genetic diversity and adaptation. Specification reference. Learning objectives. Genetic diversity and adaptation Specification reference 3.4.3 3.4.4 Learning objectives After completing this worksheet you should be able to: understand how meiosis produces haploid gametes know how

More information

Evolutionary Genetics: Part 0.2 Introduction to Population genetics

Evolutionary Genetics: Part 0.2 Introduction to Population genetics Evolutionary Genetics: Part 0.2 Introduction to Population genetics S. chilense S. peruvianum Winter Semester 2012-2013 Prof Aurélien Tellier FG Populationsgenetik Population genetics Evolution = changes

More information

Processes of Evolution

Processes of Evolution 15 Processes of Evolution Forces of Evolution Concept 15.4 Selection Can Be Stabilizing, Directional, or Disruptive Natural selection can act on quantitative traits in three ways: Stabilizing selection

More information

There are 3 parts to this exam. Take your time and be sure to put your name on the top of each page.

There are 3 parts to this exam. Take your time and be sure to put your name on the top of each page. EVOLUTIONARY BIOLOGY BIOS 30305 EXAM #2 FALL 2011 There are 3 parts to this exam. Take your time and be sure to put your name on the top of each page. Part I. True (T) or False (F) (2 points each). 1)

More information

Use evidence of characteristics of life to differentiate between living and nonliving things.

Use evidence of characteristics of life to differentiate between living and nonliving things. Grade Big Idea Essential Questions Concepts Competencies Vocabulary 2002 Standards All living things have a common set characteristic needs and functions that separate them from nonliving things such as:

More information

NOTES Ch 17: Genes and. Variation

NOTES Ch 17: Genes and. Variation NOTES Ch 17: Genes and Vocabulary Fitness Genetic Drift Punctuated Equilibrium Gene flow Adaptive radiation Divergent evolution Convergent evolution Gradualism Variation 17.1 Genes & Variation Darwin developed

More information

19. Genetic Drift. The biological context. There are four basic consequences of genetic drift:

19. Genetic Drift. The biological context. There are four basic consequences of genetic drift: 9. Genetic Drift Genetic drift is the alteration of gene frequencies due to sampling variation from one generation to the next. It operates to some degree in all finite populations, but can be significant

More information

genome a specific characteristic that varies from one individual to another gene the passing of traits from one generation to the next

genome a specific characteristic that varies from one individual to another gene the passing of traits from one generation to the next genetics the study of heredity heredity sequence of DNA that codes for a protein and thus determines a trait genome a specific characteristic that varies from one individual to another gene trait the passing

More information

AP Biology Notes Outline Enduring Understanding 1.C. Big Idea 1: The process of evolution drives the diversity and unity of life.

AP Biology Notes Outline Enduring Understanding 1.C. Big Idea 1: The process of evolution drives the diversity and unity of life. AP Biology Notes Outline Enduring Understanding 1.C Big Idea 1: The process of evolution drives the diversity and unity of life. Enduring Understanding 1.C: Life continues to evolve within a changing environment.

More information

Biology II. Evolution

Biology II. Evolution Biology II Evolution Observation-Something we know to be true based on one or more of our five senses. Inference- A conclusion which is based on observations Hypothesis- a testable inference usually stated

More information

Quantitative Genetics & Evolutionary Genetics

Quantitative Genetics & Evolutionary Genetics Quantitative Genetics & Evolutionary Genetics (CHAPTER 24 & 26- Brooker Text) May 14, 2007 BIO 184 Dr. Tom Peavy Quantitative genetics (the study of traits that can be described numerically) is important

More information

GBLUP and G matrices 1

GBLUP and G matrices 1 GBLUP and G matrices 1 GBLUP from SNP-BLUP We have defined breeding values as sum of SNP effects:! = #$ To refer breeding values to an average value of 0, we adopt the centered coding for genotypes described

More information

Quantitative Trait Variation

Quantitative Trait Variation Quantitative Trait Variation 1 Variation in phenotype In addition to understanding genetic variation within at-risk systems, phenotype variation is also important. reproductive fitness traits related to

More information

The phenotype of this worm is wild type. When both genes are mutant: The phenotype of this worm is double mutant Dpy and Unc phenotype.

The phenotype of this worm is wild type. When both genes are mutant: The phenotype of this worm is double mutant Dpy and Unc phenotype. Series 1: Cross Diagrams There are two alleles for each trait in a diploid organism In C. elegans gene symbols are ALWAYS italicized. To represent two different genes on the same chromosome: When both

More information

I Have the Power in QTL linkage: single and multilocus analysis

I Have the Power in QTL linkage: single and multilocus analysis I Have the Power in QTL linkage: single and multilocus analysis Benjamin Neale 1, Sir Shaun Purcell 2 & Pak Sham 13 1 SGDP, IoP, London, UK 2 Harvard School of Public Health, Cambridge, MA, USA 3 Department

More information

The Origin of Species

The Origin of Species LECTURE PRESENTATIONS For CAMPBELL BIOLOGY, NINTH EDITION Jane B. Reece, Lisa A. Urry, Michael L. Cain, Steven A. Wasserman, Peter V. Minorsky, Robert B. Jackson Chapter 24 The Origin of Species Lectures

More information

SWEEPFINDER2: Increased sensitivity, robustness, and flexibility

SWEEPFINDER2: Increased sensitivity, robustness, and flexibility SWEEPFINDER2: Increased sensitivity, robustness, and flexibility Michael DeGiorgio 1,*, Christian D. Huber 2, Melissa J. Hubisz 3, Ines Hellmann 4, and Rasmus Nielsen 5 1 Department of Biology, Pennsylvania

More information

Expression QTLs and Mapping of Complex Trait Loci. Paul Schliekelman Statistics Department University of Georgia

Expression QTLs and Mapping of Complex Trait Loci. Paul Schliekelman Statistics Department University of Georgia Expression QTLs and Mapping of Complex Trait Loci Paul Schliekelman Statistics Department University of Georgia Definitions: Genes, Loci and Alleles A gene codes for a protein. Proteins due everything.

More information

1. they are influenced by many genetic loci. 2. they exhibit variation due to both genetic and environmental effects.

1. they are influenced by many genetic loci. 2. they exhibit variation due to both genetic and environmental effects. October 23, 2009 Bioe 109 Fall 2009 Lecture 13 Selection on quantitative traits Selection on quantitative traits - From Darwin's time onward, it has been widely recognized that natural populations harbor

More information

Introduction to QTL mapping in model organisms

Introduction to QTL mapping in model organisms Introduction to QTL mapping in model organisms Karl W Broman Department of Biostatistics Johns Hopkins University kbroman@jhsph.edu www.biostat.jhsph.edu/ kbroman Outline Experiments and data Models ANOVA

More information

Eiji Yamamoto 1,2, Hiroyoshi Iwata 3, Takanari Tanabata 4, Ritsuko Mizobuchi 1, Jun-ichi Yonemaru 1,ToshioYamamoto 1* and Masahiro Yano 5,6

Eiji Yamamoto 1,2, Hiroyoshi Iwata 3, Takanari Tanabata 4, Ritsuko Mizobuchi 1, Jun-ichi Yonemaru 1,ToshioYamamoto 1* and Masahiro Yano 5,6 Yamamoto et al. BMC Genetics 2014, 15:50 METHODOLOGY ARTICLE Open Access Effect of advanced intercrossing on genome structure and on the power to detect linked quantitative trait loci in a multi-parent

More information

BIOLOGY STANDARDS BASED RUBRIC

BIOLOGY STANDARDS BASED RUBRIC BIOLOGY STANDARDS BASED RUBRIC STUDENTS WILL UNDERSTAND THAT THE FUNDAMENTAL PROCESSES OF ALL LIVING THINGS DEPEND ON A VARIETY OF SPECIALIZED CELL STRUCTURES AND CHEMICAL PROCESSES. First Semester Benchmarks:

More information

Gene Pool The combined genetic material for all the members of a population. (all the genes in a population)

Gene Pool The combined genetic material for all the members of a population. (all the genes in a population) POPULATION GENETICS NOTES Gene Pool The combined genetic material for all the members of a population. (all the genes in a population) Allele Frequency The number of times a specific allele occurs in a

More information

Speciation and Patterns of Evolution

Speciation and Patterns of Evolution Speciation and Patterns of Evolution What is a species? Biologically, a species is defined as members of a population that can interbreed under natural conditions Different species are considered reproductively

More information

Life Cycles, Meiosis and Genetic Variability24/02/2015 2:26 PM

Life Cycles, Meiosis and Genetic Variability24/02/2015 2:26 PM Life Cycles, Meiosis and Genetic Variability iclicker: 1. A chromosome just before mitosis contains two double stranded DNA molecules. 2. This replicated chromosome contains DNA from only one of your parents

More information

Name Class Date. KEY CONCEPT Gametes have half the number of chromosomes that body cells have.

Name Class Date. KEY CONCEPT Gametes have half the number of chromosomes that body cells have. Section 1: Chromosomes and Meiosis KEY CONCEPT Gametes have half the number of chromosomes that body cells have. VOCABULARY somatic cell autosome fertilization gamete sex chromosome diploid homologous

More information

Patterns of inheritance

Patterns of inheritance Patterns of inheritance Learning goals By the end of this material you would have learnt about: How traits and characteristics are passed on from one generation to another The different patterns of inheritance

More information

THE THEORY OF EVOLUTION

THE THEORY OF EVOLUTION THE THEORY OF EVOLUTION Why evolution matters Theory: A well-substantiated explanation of some aspect of the natural world, based on a body of facts that have been repeatedly confirmed through observation

More information

Introduction to QTL mapping in model organisms

Introduction to QTL mapping in model organisms Human vs mouse Introduction to QTL mapping in model organisms Karl W Broman Department of Biostatistics Johns Hopkins University www.biostat.jhsph.edu/~kbroman [ Teaching Miscellaneous lectures] www.daviddeen.com

More information

Chromosome duplication and distribution during cell division

Chromosome duplication and distribution during cell division CELL DIVISION AND HEREDITY Student Packet SUMMARY IN EUKARYOTES, HERITABLE INFORMATION IS PASSED TO THE NEXT GENERATION VIA PROCESSES THAT INCLUDE THE CELL CYCLE, MITOSIS /MEIOSIS AND FERTILIZATION Mitosis

More information

Chapter 17: Population Genetics and Speciation

Chapter 17: Population Genetics and Speciation Chapter 17: Population Genetics and Speciation Section 1: Genetic Variation Population Genetics: Normal Distribution: a line graph showing the general trends in a set of data of which most values are near

More information

Q2 (4.6) Put the following in order from biggest to smallest: Gene DNA Cell Chromosome Nucleus. Q8 (Biology) (4.6)

Q2 (4.6) Put the following in order from biggest to smallest: Gene DNA Cell Chromosome Nucleus. Q8 (Biology) (4.6) Q1 (4.6) What is variation? Q2 (4.6) Put the following in order from biggest to smallest: Gene DNA Cell Chromosome Nucleus Q3 (4.6) What are genes? Q4 (4.6) What sort of reproduction produces genetically

More information

Darwinian Selection. Chapter 7 Selection I 12/5/14. v evolution vs. natural selection? v evolution. v natural selection

Darwinian Selection. Chapter 7 Selection I 12/5/14. v evolution vs. natural selection? v evolution. v natural selection Chapter 7 Selection I Selection in Haploids Selection in Diploids Mutation-Selection Balance Darwinian Selection v evolution vs. natural selection? v evolution ² descent with modification ² change in allele

More information

Ohio Tutorials are designed specifically for the Ohio Learning Standards to prepare students for the Ohio State Tests and end-ofcourse

Ohio Tutorials are designed specifically for the Ohio Learning Standards to prepare students for the Ohio State Tests and end-ofcourse Tutorial Outline Ohio Tutorials are designed specifically for the Ohio Learning Standards to prepare students for the Ohio State Tests and end-ofcourse exams. Biology Tutorials offer targeted instruction,

More information

Evolutionary quantitative genetics and one-locus population genetics

Evolutionary quantitative genetics and one-locus population genetics Evolutionary quantitative genetics and one-locus population genetics READING: Hedrick pp. 57 63, 587 596 Most evolutionary problems involve questions about phenotypic means Goal: determine how selection

More information

HEREDITY AND EVOLUTION

HEREDITY AND EVOLUTION HEREDITY AND EVOLUTION 1. What is a gene? Answer. Gene is the unit of inheritance. Gene is the part of a chromosome which controls the appearance of a set of hereditary characteristics. 2. What is meant

More information

The E-M Algorithm in Genetics. Biostatistics 666 Lecture 8

The E-M Algorithm in Genetics. Biostatistics 666 Lecture 8 The E-M Algorithm in Genetics Biostatistics 666 Lecture 8 Maximum Likelihood Estimation of Allele Frequencies Find parameter estimates which make observed data most likely General approach, as long as

More information

The Origin of Species

The Origin of Species The Origin of Species Chapter 24 Both in space and time, we seem to be brought somewhere near to that great fact the mystery of mysteries-the first appearance of beings on Earth. Darwin from his diary

More information

Introduction to population genetics & evolution

Introduction to population genetics & evolution Introduction to population genetics & evolution Course Organization Exam dates: Feb 19 March 1st Has everybody registered? Did you get the email with the exam schedule Summer seminar: Hot topics in Bioinformatics

More information

Methods for QTL analysis

Methods for QTL analysis Methods for QTL analysis Julius van der Werf METHODS FOR QTL ANALYSIS... 44 SINGLE VERSUS MULTIPLE MARKERS... 45 DETERMINING ASSOCIATIONS BETWEEN GENETIC MARKERS AND QTL WITH TWO MARKERS... 45 INTERVAL

More information

EVOLUTION. HISTORY: Ideas that shaped the current evolutionary theory. Evolution change in populations over time.

EVOLUTION. HISTORY: Ideas that shaped the current evolutionary theory. Evolution change in populations over time. EVOLUTION HISTORY: Ideas that shaped the current evolutionary theory. Evolution change in populations over time. James Hutton & Charles Lyell proposes that Earth is shaped by geological forces that took

More information

Heredity and Evolution

Heredity and Evolution Heredity and Variation Heredity and Evolution Living organisms have certain recognisable heritable features such as height, complexion, colour of hair and eyes, shape of nose and chin etc. These are called

More information

Chapter 11 INTRODUCTION TO GENETICS

Chapter 11 INTRODUCTION TO GENETICS Chapter 11 INTRODUCTION TO GENETICS 11-1 The Work of Gregor Mendel I. Gregor Mendel A. Studied pea plants 1. Reproduce sexually (have two sex cells = gametes) 2. Uniting of male and female gametes = Fertilization

More information

Objectives. Announcements. Comparison of mitosis and meiosis

Objectives. Announcements. Comparison of mitosis and meiosis Announcements Colloquium sessions for which you can get credit posted on web site: Feb 20, 27 Mar 6, 13, 20 Apr 17, 24 May 15. Review study CD that came with text for lab this week (especially mitosis

More information

Ch 5. Evolution, Biodiversity, and Population Ecology. Part 1: Foundations of Environmental Science

Ch 5. Evolution, Biodiversity, and Population Ecology. Part 1: Foundations of Environmental Science Ch 5 Evolution, Biodiversity, and Population Ecology Part 1: Foundations of Environmental Science PowerPoint Slides prepared by Jay Withgott and Heidi Marcum Copyright 2006 Pearson Education, Inc., publishing

More information

Structures and Functions of Living Organisms (LS1)

Structures and Functions of Living Organisms (LS1) EALR 4: Big Idea: Core Content: Life Science Structures and Functions of Living Organisms (LS1) Processes Within Cells In prior grades students learned that all living systems are composed of cells which

More information

Introduction to Genetics

Introduction to Genetics Introduction to Genetics The Work of Gregor Mendel B.1.21, B.1.22, B.1.29 Genetic Inheritance Heredity: the transmission of characteristics from parent to offspring The study of heredity in biology is

More information